Deep Learning of the Retina Enables Phenome- and Genome-wide Analyses of the Microvasculature.
Seyedeh Maryam ZekavatVineet K RaghuMark TrinderYixuan YeSatoshi KoyamaMichael C HonigbergZhi YuAkhil PampanaSarah M UrbutSara HaidermotaDeclan P O'ReganHongyu ZhaoPatrick T EllinorAyellet V SegrèTobias ElzeJaney L WiggsJames MartoneRon A AdelmanNazlee ZebardastLucian Del PrioreJay C WangPradeep NatarajanPublished in: Circulation (2021)
Background: The microvasculature, the smallest blood vessels in the body, has key roles in maintenance of organ health as well as tumorigenesis. The retinal fundus is a window for human in vivo non-invasive assessment of the microvasculature. Large-scale complementary machine learning-based assessment of the retinal vasculature with phenome-wide and genome-wide analyses may yield new insights into human health and disease. Methods: We utilized 97,895 retinal fundus images from 54,813 UK Biobank participants. Using convolutional neural networks to segment the retinal microvasculature, we calculated fractal dimension (FD) as a measure of vascular branching complexity, and vascular density. We associated these indices with 1,866 incident ICD-based conditions (median 10y follow-up) and 88 quantitative traits, adjusting for age, sex, smoking status, and ethnicity. Results: Low retinal vascular FD and density were significantly associated with higher risks for incident mortality, hypertension, congestive heart failure, renal failure, type 2 diabetes, sleep apnea, anemia, and multiple ocular conditions, as well as corresponding quantitative traits. Genome-wide association of vascular FD and density identified 7 and 13 novel loci respectively, which were enriched for pathways linked to angiogenesis (e.g., VEGF, PDGFR, angiopoietin, and WNT signaling pathways) and inflammation (e.g., interleukin, cytokine signaling). Conclusions: Our results indicate that the retinal vasculature may serve as a biomarker for future cardiometabolic and ocular disease and provide insights on genes and biological pathways influencing microvascular indices. Moreover, such a framework highlights how deep learning of images can quantify an interpretable phenotype for integration with electronic health records, biomarker, and genetic data to inform risk prediction and risk modification.
Keyphrases
- genome wide
- diabetic retinopathy
- deep learning
- optical coherence tomography
- convolutional neural network
- optic nerve
- human health
- dna methylation
- machine learning
- electronic health record
- heart failure
- type diabetes
- endothelial cells
- healthcare
- sleep apnea
- risk assessment
- artificial intelligence
- cardiovascular disease
- genome wide association
- copy number
- signaling pathway
- blood pressure
- gene expression
- high resolution
- vascular endothelial growth factor
- stem cells
- health information
- big data
- epithelial mesenchymal transition
- cell proliferation
- adipose tissue
- clinical decision support
- metabolic syndrome
- induced apoptosis
- coronary artery disease
- public health
- cross sectional
- cardiovascular events
- chronic kidney disease
- health promotion